Probability density function
Pareto Type I probability density functions for various α with xm = 1. As α → ∞ the distribution approaches δ(x − xm) where δ is the Dirac delta function. |
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Cumulative distribution function
Pareto Type I cumulative distribution functions for various α with xm = 1. |
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Parameters |
xm > 0 scale (real) α > 0 shape (real) |
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Support | |
CDF | |
Mean | |
Median | |
Mode | |
Variance | |
Skewness | |
Ex. kurtosis | |
Entropy | |
MGF | |
CF | |
Fisher information |
Parameters |
location (real) |
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Support | |
CDF | |
Mean | |
Median | |
Variance | (this is the second moment, NOT the variance) |
Skewness |
(this is a formula for the kth moment, NOT the skewness) |
The Pareto distribution, named after the Italian civil engineer, economist, and sociologist Vilfredo Pareto, is a power law probability distribution that is used in description of social, scientific, geophysical, actuarial, and many other types of observable phenomena.
If X is a random variable with a Pareto (Type I) distribution, then the probability that X is greater than some number x, i.e. the survival function (also called tail function), is given by
where xm is the (necessarily positive) minimum possible value of X, and α is a positive parameter. The Pareto Type I distribution is characterized by a scale parameter xm and a shape parameter α, which is known as the tail index. When this distribution is used to model the distribution of wealth, then the parameter α is called the Pareto index.
From the definition, the cumulative distribution function of a Pareto random variable with parameters α and xm is
It follows (by differentiation) that the probability density function is
When plotted on linear axes, the distribution assumes the familiar J-shaped curve which approaches each of the orthogonal axes asymptotically. All segments of the curve are self-similar (subject to appropriate scaling factors). When plotted in a log-log plot, the distribution is represented by a straight line.
The conditional probability distribution of a Pareto-distributed random variable, given the event that it is greater than or equal to a particular number exceeding , is a Pareto distribution with the same Pareto index but with minimum instead of .